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特征级定量超声与CT信息融合以预测头颈癌放疗治疗结果:增强主成分分析

Feature level quantitative ultrasound and CT information fusion to predict the outcome of head & neck cancer radiotherapy treatment: Enhanced principal component analysis.

作者信息

Moslemi Amir, Safakish Aryan, Sannachi Lakshmanan, Alberico David, Czarnota Gregory J

机构信息

Physical Sciences, Sunnybrook Research Institute, Sunnybrook Health Sciences Centre, Toronto, Ontario, Canada.

Department of Radiation Oncology, Sunnybrook Health Sciences Centre, Toronto, Ontario, Canada.

出版信息

Med Phys. 2025 Sep;52(9):e18078. doi: 10.1002/mp.18078.

Abstract

BACKGROUND

Radiation therapy is a common treatment for head and neck (H&N) cancers. Radiomic features, which are determined from biomedical imaging, can be effective biomarkers used to assess tumor heterogeneity and have been used to predict response to treatment. However, most studies employ only a single biomedical imaging modality to determine radiomic features.

PURPOSE

The objective of this study was to evaluate the effectiveness of radiomic feature fusion, combining quantitative ultrasound spectroscopy (QUS) and computed tomography (CT) imaging modalities, in predicting the outcomes of radiation therapy for H&N cancer prior to start.

METHOD

An enhanced version of principal component analysis (EPCA) was proposed to fuse 70 radiomic features from CT and 476 radiomic features from QUS in order to predict the response to radiation therapy in patients with H&N cancers (partial response vs. complete response). EPCA is a PCA method with Hessian matrix regularization and -regularization, and was proposed here for information fusion at a feature level. Leave-one-patient-out methodology with bootstrap was applied to conduct train-test analysis and fused features were used to train two (support vector machine (SVM) and k-nearest neighbor (KNN)) classifiers to build a predictive model in order to predict response to treatment for patients with H&N cancers. Five-fold (5) cross validation was applied on the training set to tune the hyperparameters of SVM and KNN classifiers. Consequently, the performance of classifiers was evaluated by examining accuracy (ACC), F1-score (F1), balanced accuracy (BACC), Sensitivity (S), and Specificity (S) metrics. Additionally, a two-sided t-test was applied to the top principal components derived from EPCA methodology in order to assess the statistical significance of the selected components. The proposed method developed here was compared with minimum redundancy maximum relevance (mRMR) feature selection, conventional PCA, kernel PCA, autoencoder, and canonical correlation analysis (CCA). Additionally, we compared proposed EPCA with robust PCA and -norm constrained graph Laplacian PCA.

RESULTS

Seventy-one (n = 71) (66 male (93%) and female (7chmch%)) H&N cancer patients were recruited with bulky metastatic neck lymph node (LN) involvement. Patients had a mean age of 59 ± 10 and 25 (35.2%) were complete responders and 46 (64.8%) were partial-responders. In terms of predicting responses, the EPCA-SVM classifier had better performance than EPCA-KNN, and achieved 79 2% sensitivity, 84 2% specificity, 82  2% accuracy, 81  2% balanced accuracy, and 82  % area under curve (AUC). Results demonstrated the effectiveness of the proposed method with superiority over mRMR feature selection, conventional PCA, kernel PCA, autoencoder, and CCA methods. Using an ablation study, EPCA was compared with robust PCA and -norm constrained graph Laplacian PCA. Results supported the superiority of EPCA over rPCA and -norm constrained graph Laplacian PCA. Three principal components were statistically significant. Additionally, we compared the proposed method with the use of QUS and CT as individual imaging modalities. The results demonstrated the effectiveness of feature-level fusion in enhancing prediction accuracy.

CONCLUSION

The results demonstrated that the proposed predictive model is able to predict a binary H&N cancer treatment outcome, feature level fusion of CT and QUS radiomics has superiority over single imaging modality and EPCA is an effective approach to fuse the features.

摘要

背景

放射治疗是头颈部(H&N)癌症的常见治疗方法。从生物医学成像中确定的放射组学特征可作为有效的生物标志物,用于评估肿瘤异质性,并已用于预测治疗反应。然而,大多数研究仅采用单一生物医学成像模态来确定放射组学特征。

目的

本研究的目的是评估将定量超声光谱(QUS)和计算机断层扫描(CT)成像模态相结合的放射组学特征融合在预测H&N癌症放疗开始前治疗结果方面的有效性。

方法

提出了一种增强版主成分分析(EPCA),以融合来自CT的70个放射组学特征和来自QUS的476个放射组学特征,从而预测H&N癌症患者的放疗反应(部分缓解与完全缓解)。EPCA是一种具有海森矩阵正则化和 -正则化的主成分分析方法,在此提出用于特征级别的信息融合。采用留一患者法结合自助法进行训练-测试分析,并使用融合特征训练两个(支持向量机(SVM)和k近邻(KNN))分类器,以构建预测模型,从而预测H&N癌症患者的治疗反应。对训练集进行五折交叉验证,以调整SVM和KNN分类器的超参数。因此,通过检查准确率(ACC)、F1分数(F1)、平衡准确率(BACC)、灵敏度(S)和特异性(S)指标来评估分类器的性能。此外,对源自EPCA方法的顶级主成分应用双侧t检验,以评估所选成分的统计显著性。将此处开发的方法与最小冗余最大相关(mRMR)特征选择、传统主成分分析、核主成分分析、自动编码器和典型相关分析(CCA)进行比较。此外,我们将提出的EPCA与鲁棒主成分分析和 -范数约束图拉普拉斯主成分分析进行比较。

结果

招募了71例(n = 71)(66例男性(93%)和5例女性(7%))有巨大转移性颈部淋巴结(LN)受累的H&N癌症患者。患者的平均年龄为59±10岁,25例(35.2%)为完全缓解者,46例(64.8%)为部分缓解者。在预测反应方面,EPCA-SVM分类器的性能优于EPCA-KNN,灵敏度达到79±2%,特异性达到84±2%,准确率达到82±2%,平衡准确率达到81±2%,曲线下面积(AUC)达到82±%。结果证明了所提方法的有效性,优于mRMR特征选择、传统主成分分析、核主成分分析、自动编码器和CCA方法。通过消融研究,将EPCA与鲁棒主成分分析和 -范数约束图拉普拉斯主成分分析进行比较。结果支持EPCA优于rPCA和 -范数约束图拉普拉斯主成分分析。三个主成分具有统计学显著性。此外,我们将所提方法与单独使用QUS和CT作为成像模态进行比较。结果证明了特征级融合在提高预测准确率方面的有效性。

结论

结果表明,所提预测模型能够预测二元H&N癌症治疗结果,CT和QUS放射组学的特征级融合优于单一成像模态,且EPCA是一种有效的特征融合方法。

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